AbstractBy considering two criteria of minimum total sum of vagueness and minimum total sum of squares in estimation, this article proposes a variable selection method for a fuzzy regression equation with crisp-input and fuzzy-output. A branch-and-bound algorithm is designed and “the least resistance principle” is adopted to determine the set of compromised solutions. Numerical examples are provided for illustration
When solving a large number of problems in the study of complex systems, it becomes necessary to est...
Abstract change points. In addition, setting the change points to derive a piecewise fuzzy regressio...
The sample selection model has been studied in the context of semi-parametric methods. With the defi...
[[abstract]]By considering two criteria of minimum total sum of vagueness and minimum total sum of s...
AbstractBy considering two criteria of minimum total sum of vagueness and minimum total sum of squar...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
Market researches and opinion polls usually include customers’ responses as verbal labels of sets wi...
We present an efficient method for selecting important input variables when building a fuzzy model f...
In the classical multiple regression modeling, there might be some insignificant input variables. Th...
Fuzzy rule-based models have been extensively used in regression problems. Besides high accuracy, on...
[[abstract]]The method for obtaining the fuzzy estimates of regression parameters with the help of &...
The sample selection model has been studied in the context of semi-parametric methods. With the def...
In performing a fuzzy multiple linear regression model, important topics are: to measure the fitting...
Abstract: The sample selection model is studied in the context of semi-parametric methods. With the ...
When solving a large number of problems in the study of complex systems, it becomes necessary to est...
Abstract change points. In addition, setting the change points to derive a piecewise fuzzy regressio...
The sample selection model has been studied in the context of semi-parametric methods. With the defi...
[[abstract]]By considering two criteria of minimum total sum of vagueness and minimum total sum of s...
AbstractBy considering two criteria of minimum total sum of vagueness and minimum total sum of squar...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
Market researches and opinion polls usually include customers’ responses as verbal labels of sets wi...
We present an efficient method for selecting important input variables when building a fuzzy model f...
In the classical multiple regression modeling, there might be some insignificant input variables. Th...
Fuzzy rule-based models have been extensively used in regression problems. Besides high accuracy, on...
[[abstract]]The method for obtaining the fuzzy estimates of regression parameters with the help of &...
The sample selection model has been studied in the context of semi-parametric methods. With the def...
In performing a fuzzy multiple linear regression model, important topics are: to measure the fitting...
Abstract: The sample selection model is studied in the context of semi-parametric methods. With the ...
When solving a large number of problems in the study of complex systems, it becomes necessary to est...
Abstract change points. In addition, setting the change points to derive a piecewise fuzzy regressio...
The sample selection model has been studied in the context of semi-parametric methods. With the defi...